Big data in oncology and implications for open data, open science, rapid innovation, data reuse, reproducibility and data sharing. Cancer Moonshot, Precisions Medicine Initiative (PMI), the Genomic Data Commons, NCI Cloud Pilots, NCI-DOE Pilots, and the Cancer Research Data Ecosystem.
Book Call Girls in Yelahanka - For 7001305949 Cheap & Best with original Photos
Day 2 Big Data panel at the NIH BD2K All Hands 2016 meeting
1. 1
To develop the scientific
evidence base that will lessen
the burden of cancer in the
United States and around the
world.
NCI Mission
2. 2
Cancer Statistics
In 2016 there will be an estimated
1,700,000 new cancer cases
and
600,000 cancer deaths
- American Cancer Society 2016
Cancer remains the second most common cause of death in the U.S.
- Centers for Disease Control and Prevention 2015
3. 3
Understanding Cancer
Precision medicine will lead to fundamental
understanding of the complex interplay between
genetics, epigenetics, nutrition, environment and clinical
presentation and direct effective, evidence-based
prevention and treatment.
4. 4
(10,000+ patient tumors and increasing)
Courtesy of P. Kuhn (USC)
2006-2015:
A Decade of Illuminating the
Underlying Causes of Primary
Untreated Tumors Omics
Characterization
Cancer is a grand challenge
Deep biological understanding
Advances in scientific methods
Advances in instrumentation
Advances in technology
Data and computation
Cancer Research and Care generate
detailed data that is critical to
create a learning health system for cancer
Requires:
5. How do we solve problems in Cancer
Support and incentives for team science, collaboration
We need FAIR, open data
Support open source, open science
Support for rapid innovation
6. 6
Cancer Moonshot
Precision Medicine Initiative (PMI)
National Strategic Computing Initiative (NSCI)
Making data available: Genomic Data Commons
Using the cloud: NCI Cloud Pilots
Computation and data: DOE-NCI Pilots
Audacious yet possible
Investigate, explore, predict using real-world data!
7. Cancer Research Data Ecosystem – Cancer Moonshot BRP
Well characterized
research data sets Cancer cohorts Patient data
EHR, Lab Data, Imaging,
PROs, Smart Devices,
Decision Support
Learning from every
cancer patient
Active research
participation
Research information
donor
Clinical Research
Observational studies
Proteogenomics
Imaging data
Clinical trials
Discovery
Patient engaged
Research
Surveillance
Big Data
Implementation research
SEERGDC
8. 8
The Cancer Genomic Data Commons
(GDC) is an existing effort to standardize
and simplify submission of genomic data
to NCI and follow the principles of FAIR
– Findable, Accessible, Attributable,
Interoperable, Reusable, and Provide
Recognition.
The GDC is part of the NIH Big Data to
Knowledge (BD2K) initiative and an
example of the NIH Commons
Genomic Data Commons
Microattribution, nanopublications, tracking the use of
data, annotation of data, use of algorithms, supports
the data /software /metadata life cycle to provide
credit and analyze impact of data, software, analytics,
algorithm, curation and knowledge sharing
Force11 white paper
https://www.force11.org/group/fairgroup/fairprinciples
9. NCI Genomic Data Commons
The GDC went live on June 6, 2016 with approximately 4.1 PB
of data.
This includes: 2.6 PB of legacy data;
and 1.5 PB of “harmonized” data.
577,878 files about 14,194 cases (patients), in 42 cancer types,
across 29 primary sites.
10 major data types, ranging from Raw Sequencing Data, Raw
Microarray Data, to Copy Number Variation, Simple Nucleotide
Variation and Gene Expression.
Data are derived from 17 different experimental strategies, with
the major ones being RNA-Seq, WXS, WGS, miRNA-Seq,
Genotyping Array and Expression Array.
Foundation Medicine announced the release of 18,000
genomic profiles to the GDC at the Cancer Moonshot Summit.
10. GDC Content
TCGA 11,353 cases
TARGET 3,178 cases
Current
Foundation Medicine 18,000 cases
Cancer studies in dbGAP ~4,000 cases
Coming soon
NCI-MATCH ~5,000 cases
Clinical Trial Sequencing Program ~3,000 cases
Planned (1-3 years)
Cancer Driver Discovery Program ~5,000 cases
Human Cancer Model Initiative ~1,000 cases
APOLLO – VA-DoD ~8,000 cases
~58,000 cases
12. 12
PMI – Oncology, the GDC and the Cloud Pilots Goals
Support precision medicine-focused clinical research
Enable researchers to deposit well-annotated
(Interoperable) genomic data sets with the GDC
Provide a single source (and single dbGaP access
request!) to Find and Access these data
Enable effective analysis and meta-analysis of these data
without requiring local downloads – data Reuse
Understand Contributions, Assess value through usage,
and give Attribution to all users
13. 13
PMI – Oncology, the GDC and the Cloud Pilots Goals
Provide a data integration platform to allow multiple data
types, multi-scalar data, temporal data from cancer models
and patients through open APIs
Work with the Global Alliance for Genomics and Health
(GA4GH) to define the next generation of secure,
flexible, meaningful, interoperable, lightweight
interfaces – open APIs
Engage the cancer research community in evaluating
the open APIs for ease of use and effectiveness